Personalized news recommendation aims to provide attractive articles for readers by predicting their likelihood of clicking on a certain article. To accurately predict this probability, plenty of studies have been proposed that actively utilize content features of articles, such as words, categories, or entities. However, we observed that the articles' contextual features, such as CTR (click-through-rate), popularity, or freshness, were either neglected or underutilized recently. To prove that this is the case, we conducted an extensive comparison between recent deep-learning models and naive contextual models that we devised and surprisingly discovered that the latter easily outperforms the former. Furthermore, our analysis showed that the recent tendency to apply overly sophisticated deep-learning operations to contextual features was actually hindering the recommendation performance. From this knowledge, we design a purposefully simple contextual module that can boost the previous news recommendation models by a large margin.
翻译:个人化新闻建议旨在通过预测其点击某篇文章的可能性,为读者提供有吸引力的文章。为了准确预测这一可能性,提出了大量积极利用文章内容特征的研究,如文字、类别或实体。然而,我们注意到,最近文章的背景特征,如CTR(点击率)、受欢迎程度或新鲜度,被忽略或利用不足。为了证明情况确实如此,我们广泛比较了最近的深层次学习模式和我们设计并令人惊讶地发现后者轻易优于前者的天真背景模型。此外,我们的分析表明,最近对背景特征应用过于复杂的深层学习操作的趋势实际上阻碍了建议的执行。我们从这一知识出发,设计了一个目的很简单的背景模块,能够大大推动以前的新闻建议模式。